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Convolutional Neural Networks for Chagas’ Parasite Detection in Histopathological Images

N. Sanchez-Patino, A. Toriz-Vazquez, N. Hevia-Montiel, J. Perez-Gonzalez

20212021 43rd Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC)14 citationsDOI

Abstract

Chagas disease is a widely spreaded illness caused by the parasite Trypanosoma cruzi (T. cruzi). Most cases go unnoticed until the accumulated myocardial damage affect the patient. The endomyocardium biopsy is a tool to evaluate sustained myocardial damage, but analyzing histopathological images takes a lot of time and its prone to human error, given its subjective nature. The following work presents a deep learning method to detect T. cruzi amastigotes on histopathological images taken from a endomyocardium biopsy during an experimental murine model. A U-Net convolutional neural network architecture was implemented and trained from the ground up. An accuracy of 99.19% and Jaccard index of 49.43% were achieved. The obtained results suggest that the proposed approach can be useful for amastigotes detection in histopathological images.Clinical relevance- The proposed method can be incorporated as automatic detection tool of amastigotes nests, it can be useful for the Chagas disease analysis and diagnosis.

Topics & Concepts

Convolutional neural networkJaccard indexArtificial intelligenceChagas diseaseDeep learningPattern recognition (psychology)Computer scienceAmastigoteTrypanosoma cruziBiopsyArtificial neural networkProtozoan parasiteParasitic infectionComputer visionDigital pathologyParasite hostingFeature extractionAI in cancer detectionDigital Imaging for Blood DiseasesBrain Tumor Detection and Classification
Convolutional Neural Networks for Chagas’ Parasite Detection in Histopathological Images | Litcius